Method and server for providing a set of price estimates, such as air fare price estimates

ABSTRACT

The field of the invention relates to methods, servers and computer program products for providing a set of prices. A computer server receives a request for a price for goods or services, such as airfares, together with parameters defining those goods or services, for example: activity type, such as airfare, hotel booking, train fare; date range; destination; origin; desired weather conditions; star ratings; keywords; any other user defined preference. One or more processors programmed with software then infer, estimate or predict estimated prices from an incomplete historical price dataset by analysing patterns in that dataset and provide the price estimates to an end-user computing device, such as a personal computer, smartphone or tablet.

BACKGROUND OF THE INVENTION

1. Field of the Invention

The field of the invention relates to methods, servers and computer program products for providing a set of price estimates, such as estimates for prices for air fares, train fares, hotel prices, goods—in fact any type of goods or services whose prices are not fixed but instead are variable and it is therefore useful to be able to provide estimates for those prices.

2. Technical Background

Taking the context of airfares, the price of an airfare ticket for an itinerary is complex to compute—it is the result of calculations of possible routings, qualifying fares, and the availability of those fares. These calculations are typically performed in a Global Distribution System (GDS), and running a query against such a system can be slow, costs money and requires the use of energy to perform the calculations and to transmit the results.

Storing ticket prices and flight availabilities for all possible routes between all possible airports for a sufficiently long time horizon (eg. 1 year) would require a very substantial data storage capacity.

3. Discussion of Related Art

FR2841018(B1) discloses a method for loading flight schedule modifications comprising the steps of: receiving at least one set of flight modifications; retrieval of individual modifications within the set and storage within a register for future scheduling; simulating reassignment of the reservations concerned by the flight schedule modification by accessing, via the reservation distribution server, both the records and flight schedule databases; and final updating of the flight schedule databases of the reservation inventory.

By way of example in the context of airfare flight pricing, flight pricing is conventionally obtained from a GDS (see Section C for a more detailed explanation of how GDS systems work, and more generally about how flight pricing works). Flight comparison services, such as Skyscanner, and some airlines, pay a fee to obtain live, bookable prices from a GDS; these prices are the actual bookable prices that a potential passenger can book. However, many potential passengers are often just browsing and do not need definitively accurate bookable prices, but instead would be satisfied with an estimate. Consequently, it is very useful if an accurate price estimating method and system could be devised, especially if it removes the dependency on accessing third party resources, like a GDS, which not only cost money to access, but may not be available to provide the required information.

It is therefore desirable to provide a way of providing estimates of prices and flight availabilities between any two airports over a time period which is not as slow as accessing one or more remote servers many times to provide the estimates, and which does not require the enormous data storage capacity needed to store results in advance for all possible queries.

SUMMARY OF THE INVENTION

According to a first aspect of the invention, there is provided a method of providing price estimates, the method including the steps of:

(i) a computer server receiving a request for a price for goods or services, such as airfares, together with parameters defining those goods or services,

(ii) configuring one or more processors to determine estimated prices from an incomplete historical price dataset by analysing patterns in that dataset, at any time with respect to step (i) above;

(iii) configuring one or more processors to calculate estimates for the requested price for the goods or services that satisfy the parameters; and

(iv) providing the price estimates to an end-user computing device, such as a personal computer, smartphone or tablet.

An advantage is that the method does not require the time or energy required to access one or more remote servers many times to actually establish fare availability and to calculate fare prices. A further advantage is that the method does not require the enormous data storage capacity needed to store results in advance for all possible queries. A computer carrying out the method operates in a new way, and the perceived problems are overcome by the method. Note that steps (ii) and (iii) in this method are not necessarily separate steps but may instead be part of the same step.

The method may be one wherein the parameters defining those goods or services include one or more of the following: activity type, such as airfare, hotel booking, train fare; date range; destination; origin; desired weather conditions; star ratings; keywords; any other user defined preference;

The method may be one wherein determination of estimated prices is performed by inferring, deriving or predicting estimated prices.

The method may be one wherein step (ii) comprises:

-   (a) obtaining historical price quotes from a computer data store; -   (b) grouping the historical price quotes by category; -   (c) deriving statistics for each group; -   (d) storing on a computer for each group a classifier including the     derived statistics, and -   (e) identifying groups with stored classifiers to which the     requested price corresponds.

The method may be one wherein step (iii) comprises: calculating a set of estimates for the requested price over the specified date range using statistics from the stored classifiers corresponding to the identified groups.

The method may be one, wherein step (ii) includes using rules in order to analyse patterns in the dataset.

The method may be one wherein step (ii) includes a naïve Bayes classifier machine learning approach which produces a probabilistic model of prices, and that model is used to predict unobserved prices.

The method may be one wherein classifiers are trained using observed prices and sets of features that correspond to them.

The method may be one wherein the features relate to the request, and include one or more of: departure day of week, length of stay, does trip involve spending Saturday night at the destination?, airline, time to travel, route, month.

The method may be one wherein a classifier then predicts the price of an unobserved price by being given a set of features and providing a most likely price to have those features.

The method may be one wherein features may be derived by training multiple models with different features and comparing the predictive accuracy of the different models.

The method may be one wherein step (ii) includes building a statistical model from historical prices, identifying missing quote candidates, and pricing quote candidates based on the statistical model.

The method may be one wherein estimating prices for each candidate quote occurs in the following steps: extracting category feature values from the quote; retrieving from a database a classifier trained for an extracted category; extracting all feature values from the quote candidate; classifying the candidate quote by calculating Bayes posterior probabilities for each price range stored in a classifier and choosing a price range class with a highest Bayes posterior probability, and attaching a price class to a candidate quote.

The method may be one wherein inputs for the statistical model include: list of routes, classifier categorization scheme, historical quotes, and a set of supported features with weights.

The method may be one wherein historical quotes are filtered by age.

The method may be one wherein inputs for the statistical model include reversed route equivalents.

The method may be one including the step of: including cached fare prices in the set of price estimates.

The method may be one wherein the set of price estimates is constructed without querying a Distribution System after step (i).

The method may be one wherein the price is for a journey that is a one-way journey.

The method may be one wherein the price is for a journey that is a return journey.

The method may be one wherein the price includes an air fare price.

The method may be one wherein the price includes a train fare price.

The method may be one wherein the price includes a car hire price.

The method may be one wherein the price includes a hotel price.

The method may be one wherein the request comprises a flexible search request.

The method may be one wherein a final result of the method is up to one quote per input date or dates pair.

The method may be one including the steps of

(A) configuring the one or more processors to determine confidence ranges of the estimated prices from an incomplete historical price dataset by analysing patterns in that dataset, at any time with respect to step (i), and

(B) configuring the one or more processors to calculate confidence ranges of the estimated prices for the requested price for the goods or services that satisfy the parameters.

The method may be one further comprising the step of:

(C) providing the confidence ranges together with the fare price estimates to an end-user computing device, such as a personal computer, smartphone or tablet.

The method may be one further comprising the step of:

using the confidence ranges to decide whether to display a price to a user, or to provide a probable range of prices to a user.

The method may be one wherein the probable range of prices are displayed as error bars.

The method may be one wherein a date range includes only one outward date.

The method may be one wherein a date range includes only one return date.

The method may be one including a method of providing a set of best return fare price estimates for a specified range of outward dates and a specified range of return dates, wherein:

step (i) includes receiving a request for a return fare price for a specified range of outward dates and a specified range of return dates for a journey from a starting location to a destination location, and

step (iv) includes providing the set of best return fare price estimates for the specified range of outward dates and for the specified range of return dates.

The method may be one wherein the set of best return fare price estimates are provided in a bar chart format.

The method may be one wherein an estimation process is parameterized by one or more of: a minimum Bayes posterior probability required to accept a classification result; a maximum number of route operators involved in candidates' generation, or a random variation added to Bayes posterior probability to avoid ties.

The method may be one wherein the method is performed on a server from which estimation services for fare availability and price are provided.

According to a second aspect of the invention, there is provided a server configured to provide price estimates, the server arranged to:

(i) receive a request for a price for goods or services, such as airfares, together with parameters defining those goods or services, including one or more of the following: activity type, such as airfare, hotel booking, train fare; date range; destination; origin; desired weather conditions; star ratings; keywords; any other user defined preference; (ii) determine estimated prices from an incomplete historical price dataset by analysing patterns in that dataset, at any time with respect to (i) above; (iii) calculate estimates for the requested price for the goods or services that satisfy the parameters and (iv) provide the price estimates.

The server may be one wherein for (ii) the server is arranged to:

-   (a) obtain historical prices from a computer data store; -   (b) group the historical prices by category; -   (c) derive statistics for each group; -   (d) store for each group a classifier including the derived     statistics, and -   (e) identify groups with stored classifiers to which the requested     price corresponds.

The server may be one wherein for (iii) the server is arranged to: calculate a set of estimates for the requested price over the specified date range using statistics from the stored classifiers corresponding to the identified groups.

The server may be one further arranged to perform a method of any method according to a first aspect of the invention.

According to a third aspect of the invention, there is provided a computer program product embodied on a non-transient storage medium, the computer program product when running on a computer arranged to provide price estimates, the computer program product when running on a computer arranged to:

(i) receive a request for a price for goods or services, such as airfares, together with parameters defining those goods or services, including one or more of the following: activity type, such as airfare, hotel booking, train fare; date range; destination; origin; desired weather conditions; star ratings; keywords; any other user defined preference; (ii) determine estimated prices from an incomplete historical price dataset by analysing patterns in that dataset, at any time with respect to (i) above; (iii) calculate estimates for the requested price for the goods or services that satisfy the parameters, and (iv) provide the price estimates.

The computer program product may be arranged to perform a method of any of method according to a first aspect of the invention.

According to a fourth aspect of the invention, there is provided a computer terminal in connection with a server of any server according to the second aspect of the invention, the computer terminal arranged to send a request for a price estimate for a specified date range for a journey from a starting location to a destination location, wherein the computer terminal is further arranged to receive price estimates.

According to a fifth aspect of the invention, there is provided an item or a service, such as an airline ticket, and in which a price estimate for that item or service is provided using a method according to the first aspect of the invention or a server according to the second aspect of the invention.

According to a sixth aspect of the invention, there is provided a web-based price comparison web site, with which end-users can interact by providing a request for a price for goods or services, and that web-based price comparison web site provides that request to a server that estimates the price(s) using the method of any method according to the first aspect of the invention.

BRIEF DESCRIPTION OF THE DRAWINGS

The above and other aspects of the invention will now be described, by way of example only, with reference to the following Figures, in which:

FIG. 1 shows an example of a system for estimating prices from other prices, with the purpose of using those prices to augment a cache of observed fares.

FIG. 2 shows an example of how a ‘difference’ engine can be used to derive the availability of fare classes from a live update.

FIG. 3 shows examples of equations suitable for use in Naïve Bayes classification.

FIG. 4 shows an example in which feature values are represented by numbered areas and price ranges (buckets) represent frequency information.

FIG. 5 shows an example of a full training process.

FIG. 6 shows an example in which Naïve Bayes classifiers can be used to price each candidate quote placeholder.

FIG. 7 shows an example of a full process of inferring missing quotes.

FIG. 8 shows an example of connections between a server providing estimation services for fare availability and price, and input data sources, and output to partners and to users.

FIG. 9 shows an example of a user interface.

FIG. 10 shows an example of a user interface.

FIG. 11 shows an example of a system for performing a search process.

FIG. 12 shows an example of a user interface.

FIG. 13 shows an example of user interface output.

FIG. 14 shows an example of user interface output.

FIG. 15 shows an example of an architecture for browse searches.

FIG. 16 shows an example of an overall system architecture for a system which includes provision of estimation services for fare availability and price.

FIG. 17 shows an example GDS configuration.

FIG. 18 shows an example of fares regarding a fare class record, fare categories, and category data tables.

FIG. 19 shows an example of a process which provides fare pricing options.

FIG. 20 shows an example of a relationship between a pricing engine, AVS/NAVS, Seamless (polling), a cache DB and an airline host.

FIG. 21 shows an example system including an Availability Server.

FIG. 22 shows an example a graphical indication of a confidence range for estimated prices using a bar, which spans a price range from the lowest price to the highest price of a range in which the price is to be found. The bar is provided for a range of outward journey dates and for a range of return journey dates.

DETAILED DESCRIPTION

One implementation of the invention provides ‘Model-Based Pricing’. It is described in section A below.

A. Model Based Pricing

There is provided flight price estimation using model based data interpolation.

Background/Motivation

The price of a ticket for an itinerary is complex to compute—it is the result of calculations of possible routings, qualifying fares, and the availability of those fares. These calculations are typically performed in a Global Distribution System (GDS), and running a quay against such a system can be slow and also costs money.

Airlines that file fares in a GDS typically use a pricing model that we refer to as ‘scheduled’. The key thing to note about such a model is that if there is a return trip departing on day O1, and returning on day R1, the price of a return ticket P(O1,R1) is not equal to the sum of two single tickets P(O1)+P(R1). The alternative pricing model, which we will call ‘budget’ pricing is one where P(O1,R1)=P(O1)+P(R1).

Two important consequences of the scheduled pricing model are the limitations it puts on re-use of observed prices, and the space required to store them.

In a budget model, if two ‘return’ queries are made, one for dates O₁ R₁ and the other for dates O₂ R₂, the resulting prices P(O₁), P(R₁), P(O₂), and P(R₂) can be used to compute up to four return fares (i.e. P(O₁,R₁), P(O₁,R₂), P(O₂,R₁), P(O₂R₂)), as well as having the four fares for use in one-way queries (P(O₁), P(R₁), P(O₂), and P(R₂)). If the query were run for a ‘scheduled’ model there would just be two fares i.e. P(O₁ R₁) and P(O₂,R₂). Thus in the budget model two queries enables us to answer eight queries, whereas in the scheduled model, two queries enables us to answer two queries.

Assuming that flight prices are only available for the current day and upcoming 364 days, all possible single and return fares on a route, can be found by performing 365 return queries. In the case of the scheduled model, there would need to be: 365*(365+1)/2=66,795 return queries, as well as 365 single queries in each direction. Thus in order to build a complete list of prices for a route, the scheduled model requires about 185 times more queries than the budget model.

If one had the result of all those queries, there would necessarily be about 185 times the required storage space in order to the save the fares.

The above is just an example for a route between two defined airports. In practice there are about 5,000 commercial airports in the world. Hence number of possible journeys between the airports is about (5,000)². Taking into account the number 365*(365+1)/2=66,795 of possible return queries described above, this leads to a total number of possible queries between all airports for a year of (5,000)²365*(365+1)/2, which is about 10¹². The implied amount of data storage is very large indeed.

The massive increase in the number of queries needed to form a ‘complete picture’ of a scheduled model route combined with the costs of GDSs means that it is not practical (i.e. it is disadvantageous) to build such a cache. The result is then an incomplete cache, with ‘holes’ where fares have not been observed.

The prices, returned by the GIDS, however, are the result of applying fare rules and availability. There are patterns and consistencies in the observed fares as a result. This example relies on using those patterns to allow us to interpolate the fares missing from the cache, using a model that reflects the fare rules that generated the prices in the first place.

System for Estimating Prices from Other Prices

There is provided a system for estimating prices from other prices, with a purpose of using those prices to augment a cache of observed fares (e.g. observed by users requesting prices for live bookable fares). An example model is shown in FIG. 1.

The estimator uses statistics derived from the quotes in order to predict other quotes. A very simple estimator could compute that all missing fares are equal to the average of all observed fares. The level of prediction can be improved by making the model more sophisticated, in order to take into account the type of rules used to generate the fares in the first place.

For example, a common ‘rule’ that defines whether a fare is valid for an itinerary is whether the itinerary involves staying on a Saturday night. Typically such rules mean that dates that involve not spending Saturday night at the destination are much more expensive—the rule is designed to penalize business travellers who usually desire to only be away during the work week. Thus a better model could be calculated that comprises two averages—the average of all observed fares that do involve a Saturday night stay, and the average of all the observed fares that do not involve a Saturday night stay. The algorithm would then predict prices for previously unobserved date pairs, by firstly calculating whether there was a Saturday night between the date pair, and then returning the corresponding average. This results in an estimate with increased accuracy.

Similar improvements can be made to the model—for example, the price of travel varies depending on the day of the week—Mondays are typically more expensive than Wednesdays, thus calculating and using averages that also take into account the day of week would also potentially improve the model accuracy.

Therefore a statistical model may be provided for predicting fares, using statistics and rules which may have been derived by a human, for example. An alternative method of producing the statistical model is also possible—this approach uses a machine learning approach called a ‘Naïve Bayes classifier’ to produce a probabilistic model of fares, and that model is used to predict the unobserved fares. The classifier is trained using observed prices and sets of ‘features’ that correspond to them. The features relate to the query that generated the fares, and could include: departure day of week, length of stay, stay Saturday, airline, etc. The classifier then predicts the price of an unobserved fare by being given a set of features and providing the most likely price to have those features.

The statistical model for predicting prices can then be consulted in order to predict previously unobserved fares, or observed fares in the event of wanting to measure the accuracy of the model.

Key Features and their Calculation

Features which may be used for training classifiers include:

-   -   Stay Saturday     -   Length of stay     -   Day of week     -   Time to travel     -   Airline     -   Website     -   Route     -   Date—at day and year-month level     -   Month

These features have been derived by analysing all the fares listed in FROP (Fare Rule Output Product, from ATPCO (the Airline Tariff Publishing Company)) and determining which rules applied to the largest number of fares. For example, 54% of fares have a minimum stay rule, and 31% of all fares have a minimum stay rule requiring that Saturday night is spent at the destination. Therefore, the feature is likely to be a useful feature for classification on the basis of price. A more accurate estimate of the utility of features may be derived by training multiple models with different features and comparing the predictive accuracy of the different models.

Benefits

-   -   Estimation of missing flight price data     -   Using features related to the generation of data to produce a         superior predictive model         Potential Market(s) and/or Area(s) of Application

The model may be used in the flight industry in order to estimate previously unobserved prices, in order to display them to users, or to determine whether it is worth querying to return the price e.g. is it likely to be good value.

The model may be used in other fields where there is a disadvantage to obtaining a price (e.g. cost of querying), but where the price was generated by structured means (e.g. pricing rules). This includes travel products such as hotels, trains, and car hire cars; as well as other products with structured pricing, such as insurance.

Other Applications

Consumer price comparison websites. Companies trying to price competitively by comparing prices with those of rivals.

Model Based Pricing—Inferring Missing Quotes

Inferring of missing quotes may take place in two stages, training and estimation:

-   -   training         -   building statistical model from historical prices     -   estimation         -   identifying missing quote candidates         -   pricing quote candidates based on statistical model

In an example, a statistical model is a set of Naive Bayes classifiers trained periodically (e.g. daily) with historical prices. Missing quotes are inferred based on route operators' data and priced using classifiers.

Example of a Statistical model

Naïve Bayes classification is based on dependency between the probability that an object described by a given set of features belongs to a given class and the probability that an object from this class is characterized by a given set of features: see Eqs. (1) and (2) in FIG. 3.

Eqs. (1) and (2) can be simplified to Eq. (3) in FIG. 3. In Eqs. (1)-(3):

-   -   C is a class to which an input object can be classified (eg. in         our case: price range e.g. 75-125 EUR)     -   F_(i) is a feature value (eg. in our case: Friday, Air France         airline website etc.)

Classification can be expressed using Eq. (4) in FIG. 3.

For a given set of feature values we want to find a class (price range), where they occur most often and thus maximise the probability that a class characterizes the input set.

Training

An intention of classifier training is to calculate how frequently feature values occur for observed price ranges. In a process shown for example in FIG. 4 feature values are represented by numbered areas and price ranges (buckets) represent frequency information (e.g. feature values quantity in range 75-125 EUR, 126-175 EUR etc.).

The following elements are inputted for an example training process:

-   -   list of routes     -   classifier categorization scheme     -   historical quotes     -   set of supported features with weights

A list of routes sets boundaries for training. A category defines a scope of a given classifier and is expressed by a set of feature values. An experimentally chosen category consists of a city-level route and airline (example: London-Paris, Air France), but other options are possible (e.g. city-level route without airline). There is always one classifier per category. A classifier is trained only with historical quotes matching its category (e.g. only quotes for London-Paris route operated by Air France).

In a first step of a training process, a given number of the most recent historical quotes with a certain maximum age is retrieved from a database. Categories are evaluated for every quote. Quotes are grouped by categories. Each group becomes a training set for one classifier.

A training set can be extended using quotes for reversed route equivalents. Example: for a historical quote on the route London Stansted-Rome Ciampino with Air France, a reversed route equivalent would be for Rome Ciampino-London Stansted with the same airline and other details like price. Quotes for reversed routes are included in training scaled by a weight adjusting its significance.

Next, for each group a classifier with the following statistical information extracted from quotes is built:

-   -   a weighted number of quotes containing each distinct feature         value     -   a weighted number of quotes containing each distinct feature         value per price range of given granularity     -   a number of observed price ranges, quotes per price range and         all quotes

Weights applied to a number of quotes can differ between features to emphasize a larger influence of some of them (e.g. a trip including a weekday may be more important than stay length).

The process ends with one classifier for each training set (e.g. one classifier for a London-Paris route operated by Air France) containing statistical information. A model is stored for future use. A classifier can be trained again e.g. periodically or when a number of historical quotes change.

A classifier may only be created if a certain number of quotes matching its category are available.

An example of a full training process is shown in FIG. 5.

Apart from parameters listed above, a training process can be parameterized by:

-   -   A size of price ranges per route (e.g. 1 EUR, 5 EUR, 10 EUR)     -   a weighting applied to reversed routes     -   a weighting function applied based on quote age         Estimating Missing Quotes

In an example, a user searches for one-way or return flights for a given route and dates range. A system responds to a query with a set of cheapest quotes from a database: up to one per each date (or dates pair—for return flights). The response may not include quotes for certain dates (date pairs). Missing quotes can be inferred using trained Naïve Bayes classifiers.

The following elements may be input for an inferring process:

-   -   a route     -   a list of dates (or date pairs) with missing cheapest quotes         information

Classifiers can only be used to price existing quotes, so candidate quotes must be evaluated first. Candidates are combinations of every applicable airport pairs, date (dates pair), airline and agent available for queried route. A list is generated based on the process inputs and a route operators' database.

Next, Naïve Bayes classifiers can be used to price each candidate quote placeholder. See FIG. 6 for example.

Inferring prices may occur for each candidate quote in the following steps:

-   -   extract category feature values from the quote     -   retrieve from a database a classifier trained for an extracted         category     -   extract all feature values from the quote candidate     -   classify the candidate quote by:         -   calculating Bayes posterior probabilities for each price             range stored in classifier         -   choosing price range class with highest Bayes posterior             probability     -   attach price class to candidate quote

If no classifier exists for given candidate quote, a price is not inferred and a date (date pairs) slot remains empty.

A process can result in multiple priced quote candidates per date (dates pair). For this reason a next step is to choose a single quote for each date (dates pair). A choice can be made based on price e.g. cheapest quote per date (dates pair) is selected.

A final result of the process is up to one quote per input date (dates pair). Inferred quotes can be included in a response returned to a user. An example of a full process of inferring missing quotes is shown in FIG. 7.

Apart from parameters listed earlier, an inferring process can be parameterized by:

-   -   a minimum Bayes posterior probability required to accept a         classification result     -   a maximum number of route operators involved in candidates'         generation     -   a random variation added to Bayes posterior probability to avoid         ties         Estimation Methods which Give a Confidence to the Price

Estimation methods may be provided which give a confidence to the price. e.g. we are 99% confident it is within $5, $1000, etc. Hence the estimation methods may provide for:

-   -   the calculation and return of those confidences.     -   the use of those confidences to decide whether to display a         price to a user, or to show a probable range of prices to a user         (eg. error bars).

A number of methods of estimating a price are capable of returning a measure of confidence for the price. For example, in the case of the Naïve Bayesian classifier, the selected class is the class with the highest probability, but that probability can be used as an indicator of the confidence in the estimate—the closer the probability is to 1 the more confident it is that the predicted price is the correct one.

The resulting confidence may be used in a number of ways. If there is a very low confidence in the estimate, the decision may be made:

Not to show the estimate as it is not helpful for the user

To trigger live retrieval of the price so that an exact value can be shown to the user

The confidence can be shown to the user. This could be indicated in a number of ways:

A bar showing the range of likely values for the price (see FIG. 22 for example)

Reducing the visibility/intensity of the displayed price (for example with the use of colouring, shading or a dotted line).

A confidence range for estimated prices spans a price range from the lowest price to the highest price of a range in which the results of an estimation method lead to confidence that the price is to be found. A confidence range for estimated prices may be indicated graphically using a bar. The bar may be displayed for each date in a range of dates. The bar may be displayed for each date in a range of dates for an outward journey and for a return journey. The bar may be colour-coded cg. to indicate that the bar corresponds to recent prices which are likely to be stable relative to the booking function, to price ranges derived from multiple tickets sharing a departure date, and to price ranges estimated from similar itineraries. One bar may be provided for a given date. More than one bar may be provided for a given date. An example is given in FIG. 22.

B. Derived Availability Engine

Background/Motivation

The motivation is very similar to that in the Model Based Pricing example.

The ‘scheduled’ price model means that two single quotes cannot be used to create a return quote, and therefore a query has to be run for every possible date pair, and the large number of date pairs makes it prohibitive to do this due to the cost of obtaining the data and the space required to store it. The return prices, however, are the result of combining available fares available for the outward and inward legs, along with some rules. Thus if it is possible to know the availability and rules, it is possible to decompose a return query into ‘reusable’ legs that can be used to construct new ‘return’ prices, in a similar (but different) manner to that used for airlines with a budget price model.

Example of Derived Availability Engine

Global Distribution Systems gather schedules from OAG (Official Airline Guide: see e.g. www.oag.com), fares from ATPCO, and fare class availability from the airlines, and store this information in their own systems. This stored information is periodically updated from those sources. When a query comes to a GDS to quote for a given route and date(s), the GDS performs the following steps:

-   -   1. Determine valid itineraries from schedules     -   2. Compute valid fares for the itineraries (Some GDS do not have         pricing engines and use a third party engine, such as one         provided by SITA (see e.g. http://www.sita.aero/), to ensure the         correct price is applied for each itinerary travelled.)     -   3. Find the availability of those fares     -   4. Adding the correct taxes and surcharges

Step 1 may be achieved in routes services. Specifically, it may be achieved by using timetables and rules about what can be sold; given a user query we can identify the valid itineraries that a ticket can be bought for.

Airlines submit fares to ATPCO, and ATPCO provide subscriptions to these data, but transforming these raw fares and rules into a system for determining the correct fare for a given query would be a massive effort. Fortunately, ATPCO supply merged fare and rule data in a data feed called PROP (Fare Rule Output Product). PROP data are transmitted in a fixed-length file of records containing fare information and summarized rule conditions for key categories. Therefore Step 2 can be accomplished using the PROP data. It can also be achieved by combining fare rules and prices from airlines, using a pricing engine.

ATPCO also provide a feed of itinerary and service fee taxes. A tax and surcharge engine can be built that takes the data in these subscriptions and uses them to calculate the overall price a customer would pay for a given fare, thereby emulating Step 4.

The only remaining item for low cost calculation of GDS fares is the availability—Step 3. It is possible to derive availability by comparing the result of a live update (the net result of Steps 1-4) with the calculation of Steps 1, 2, and 4 outlined above. i.e. by combining the routes service, fares from PROP and a tax and surcharge engine it is possible to compute all the possible fares, and the observed fares from a live update can be used to infer which of possible fares was used, and therefore which of the computed fares were available. The diagram in FIG. 2 shows how such a ‘difference’ engine can be used to derive the availability of fare classes from a live update.

If the available fares are known for both the outward and inward leg of a return flight, the return price can be calculated even if the specific pair of dates in the return has not been observed. This way of modelling quotes is known as Single Leg Combinable (SLC). SLC is similar to the ‘budget’ price model except that in the budget case the outward and inward legs of a return are also valid as single tickets. In the budget case constructing returns is simply a matter of adding the inward and outward leg prices (SLC construction is slightly more complex as it requires finding the valid fares for the date-pair and then applying availability).

If the price of a fare increases, while availability remains the same, the derived availability engine can be used to calculate the new price without it having even been observed.

There are additional benefits to producing this feed of derived availability compared to using a GDS. Pure calculation in a GDS does not guarantee that the fares are ‘findable’ on airline or OTA websites, whereas observed fares are—by definition—findable. Also, pure calculation also does not account for extra fees, mark-ups, discounts, and private fares which can be embedded in the observed fares.

Note that fare prices don't necessarily change, but there are lots of different fares for a specific flight, and the availability of each fare can change: yield management software may continuously alter what fares are available, so cheaper tickets may just disappear as yield management withdraws them to increase yield.

Benefits

-   -   Deriving availability rather than requiring queries to a GDS or         airline reservation system in order to find it     -   Calculation of new prices on the basis of estimated         availability, rather than true availability.     -   Estimation of new prices based on availability and fare rules,         without having observed instances of the new prices.         Potential Other Applications

Providing airlines with pricing of their own products, as they are also currently pricing this from the GDS at a high cost.

Companies interested in finding flight data prices, at a considerably reduced cost.

Architecture Overview Example

There is provided a server (which may be real or virtual) from which estimation services for fare availability and price are provided. A related website, smartphone apps, business-to-business services, connections with traditional airlines (eg. British Airways, Qantas, KLM etc.), connections with budget airlines (eg. RyanAir, easyJet, germanwings etc.) and travel booking websites (eg. lastminute.com, opodo, Thomson etc.) may be provided.

Travel booking websites and airlines may provide input data for the server from which estimation services for fare availability and price are provided. Output may be provided by the server to a public application programming interface (API) e.g. to partner companies. Output may be provided by the server to a website for searching, to a mobile website for searching, and to apps on smartphones, for users. An example connection configuration between the server and input data sources, and output to partners and to users, is shown in FIG. 8.

In a search at the server, a user may specify a start location (which could be an individual airport, a city including a plurality of airports, or a country including a plurality of airports, for example). In a search at the server, a user may specify a destination location (which could be an individual airport, a city including a plurality of airports, or a country including a plurality of airports, for example). In a search at the server, a user may specify a departure date or a range of departure dates (which could be a date range, or a calendar month, or an unspecified date which could imply a date range such as any date in the coming year, for example). In a search at the server, a user may specify a return date or a range of return dates (which could be a date range, or a calendar month, or an unspecified date which could imply a date range such as any date in the coming year, for example). In a search at the server, a user may specify a one way ticket or a return ticket. A user may specify the number of passengers in specific age ranges. A user may specify a class of ticket (eg. economy, premium economy, business class or first class, for example). A parallel search for hotels may be performed. A parallel search for car hire may be performed. A preference for direct flights may be indicated. An example user interface is shown in FIG. 9. A further example user interface is shown in FIG. 12, which is an example of a flexible search, because the departure indicates the airport used in London (UK) may be any, and the destination indicates that any airport in Australia is permitted.

Output search results may include a list of flights which satisfy the search criteria. A graphical indicator (eg. a slider bar) may be provided to limit the outbound flight departure time range. A graphical indicator (eg. a slider bar) may be provided to limit the return flight departure time range. A selectable tab may be provided such that flights may be arranged in order of increasing cost. A selectable tab may be provided such that flights may be arranged in order of increasing travel time. A selectable tab may be provided such that flights may be arranged in order of airline name in alphabetical order. An example user interface is shown in FIG. 10.

In an example search by a user, a flight between a start and a destination is requested (which may be a one way or a return flight), for an outbound flight date, and a return flight date if relevant. In an example search process, in a first step, partner search websites from which to show output are selected. In a second step, relevant prices that are already cached are identified. In a third step, relevant prices that are not available are identified and updated. In a fourth step, the new data is cleaned up and saved (for example, taxes and fees may be stripped out, and who the real flight operator is may be identified). In a fifth step, prices are returned to a user. An example of a system for performing a search process is shown in FIG. 11.

In a flexible search, output data may provide a list of destination airports which satisfy a flexible search criterion (eg. destination is any airport in Australia, starting from any airport in London, UK), which may be listed in ascending order of price. An example of user interface output is shown in FIG. 13. Upon selection of a particular airport, a minimum price for an outward leg of the journey may be presented as a function of outward departure date eg. for a selectable calendar month, and a minimum price for a return leg of the journey may be presented as a function of return departure date eg. for a selectable calendar month, for selected start and destination cities or airports. An example of user interface output is shown in FIG. 14.

Browse searches may be provided. A browse service may be provided to users of smartphone apps or to users of a search website. The browse set-vice may access browsed prices data. Browsed price data may include data that has been scraped from website content. The browse service may be connected to a public application programming interface (API). The browse service might not be connected to airline servers or to the servers of other travel information service providers. An example of an architecture for browse searches is shown in FIG. 15.

An example of an overall system architecture for a system which includes provision of estimation services for fare availability and price is shown in FIG. 16.

The following section provides background information on how airfares are calculated and the role of the GDS.

C. Introduction to Global Distribution Systems

A Global Distribution System (GDS) may be defined as a system containing availability, prices, and related services for Airlines and through which reservations can be made and tickets issued. The GDS makes these functions available to subscribing travel agents, booking engines, airlines and to other subscribers. An example GDS configuration is shown in FIG. 17. A more general term is a “Distribution System”, which may include the ability to make reservations for modes of transport other than air transport, for example, e.g. trains.

Route Explorer

Historically, GDSs have added exploring routes as airline networks grew. As the number of potential and possible connections increased exponentially (SOF-NYC has a large number of connection points, e.g. SOF-IST-NYC, SOF-FRA-NYC, SOF-MOW-CPH-NYC, etc), GDSs added this layer of ‘connection’ building to reduce the number of different priceable routes, so that they do not have to process that many fares and rules. They did that in a very blunt manner—static route and connection tables, which will tell them that to fly between zones (defined by ATPCO-US-EUR, EUR-APAC for the simplicity of argument), in essence including in the route explorer cities between SOF-NYC, potentially a couple in the wrong direction (such as IST), but dismissing a great number of cities as a possible connection—e.g. a flight SOF-PRG-CPH-NYC might be considered too complex and potentially expensive, so it is dropped at the route explorer stage.

Connection Building

After the routings are established, the connection building starts looking into carriers, flight numbers, and connection restrictions, which are included in the Minimum Connect Time (MCT) tables. The MCT, distributed by OAG, is a complex document which specifies general rules how flights/carriers can connect in terms of time e.g. IF long-haul US-EU connect at LHR to a EU-EU, apply 120 min MCT. The general rules are easy to interpret, but are important—a manual override is needed if someone wants to place a booking outside the MCT parameters.

Where it gets interesting is the MCT exceptions—about 200,000 or so, which can go down to IF DL flight #003 connect to an AF flight #004, then require 55 min. However, if DL flight #003 arrives at CDG at Gate 19 and connect flight AF009 departs from Gate 49, then apply an MCT of 65 min, etc. About 70,000 of all exceptions are for Air France (AF) and Paris Charles De Gaulle airport (CDG)—that's why many passengers consider it the worst to fly through.

Fares

An example of a fare is a pricing contract, which specifies a price (base fare) for a service provided by the carrier, defined by service class, class type (Y, Q, J, M, H, etc) and type of trip (one-way, round-trip, multi-city, round-the-world (RTW)).

In an example, each fare comes with an attached number of rules and restrictions that apply to it—think of a fare as a contract that is 20-30 pages long, rather than just an excel raw (a spreadsheet or CSV file). So rather than thinking of a fare as a row in a big excel spreadsheet with columns indicating which features a fare has, instead one should think of a fare as a complex thing in its own right with many parameters and restrictions and therefore rather more like a contract. The fare defines who, when, and how one can use the fare—passenger type, when the fare is applicable (NVB, NVA—not valid before, not valid after) and a whole lot of other restrictions. A fare could be a public fare (accessible to every reseller) or a private fare (accessible to specified reseller/seller).

Fares are provided by carriers; they are defined at a general level to a market, and are limited by travel and ticketing dates. Naturally, a fare represents a price point.

Fare Upload and Distribution

ATPCO is an industry body that handles the fares and fares distribution in the industry. There's a small number of carriers which distribute only to SITA (Bulgaria Air is an example).

Scheduling

Previously, ATPCO would release the fares on a specific schedule, but per carrier request, the organization started releasing the fares hourly. This allows airlines to ensure quick reaction to market changes that are not suitable only for availability controls.

SITA releases its fares 4 times a day on the weekdays and 3 times over the weekend. There are also fares that live in the GDS (GDS-specific fares, or negos)—these fares are entirely under the control of the GDSs and do not follow a general distribution schedule.

Fare Rules and Restrictions and Categories

Fare data, fare class data, and fare restriction data are provided.

How does pricing work (very high level)?

Rules are calculated by a pricing engine in a very strict order of rule records, tables, and sub-tables. If no specific rule records are found, then there is a General Rule that governs them all.

Restriction Data:

-   -   Fare Class tells engines that there is a rule for a specific         fare     -   Category Control tells engines what types of restrictions exist     -   Category Data tables are last, when the engines read to get the         relevant information

For example, fare class tells engines there is a rule attached, which is Category 15 (Sales restrictions), which, after digging into the Category Data Tables pulls additional information on it—what type, what are the rules and restrictions.

An example of fares regarding a fare class record, fare categories, and category data tables, is shown in FIG. 18.

Fare Display vs. Fare Quote and Process

A lot of industry professionals use the terms Fare Display and Fare Quote interchangeably, which for experts is not acceptable. Let us explain that:

Fare Display:

A comprehensive, consolidated picture of the market fares and related rules. This allows agents to:

-   -   Compare fare rules (N.B! not prices)     -   Communicate contract terms (fare rules) to passengers         Fare Quote:

A final price, after contract terms have been applied. It captures pretty much what we would like to give to the passenger:

-   -   All taxes     -   All surcharges     -   All regulations related to it     -   Final Price

An example of a process which provides fare pricing options is shown in FIG. 19.

Availability

Availability knowledge is very important in the industry. Availability allows airlines to control their inventory (seats) and it adds another way to manage how profitable a route is by opening up and closing availability buckets, which is managed by revenue management systems (RM).

While certain RMs have great functionality to manage complex rules, most of the availability rules are created by internal departments of statisticians and mathematicians, so the complexity is high.

There are three main ways to receive availability, if you want to check whether a certain seat/class of service is available.

i) NAVS/AVS

NAVS=simple, numeric availability per seat class.

Example: Y9 H3 M0 1.8 . . . .

AVS=availability status—is the flight open/closed, open for waitlist, etc.

ii) Polling

CXR (a carrier) could use NAVS/AVS only as an indication, if a better connection goes down. These CXR use revenue management rules and they need to be polled for real availability and all availability information.

Some airlines and/or flights require to be polled and the instruction for it is MR (market restrictions). When a GDS asks for AVA, if the tag is MR, then the GDS needs to poll for the right availability. Unfortunately, NAVS/AVS do not show these tags, so if a GDS uses NAVS/AVS for a tagged flight, they might display the wrong availability.

iii) Cache DB

In order to reduce polling and NAVS/AVS, pricing engines have developed complex cache DBs. These are not accurate, even though as they store info, they kind of achieve their goal of reduced calls.

An example of a relationship between a pricing engine, AVS/NAVS, Seamless (polling), a cache DB and an airline host is shown in FIG. 20.

Availability Server Example

A caching mechanism may be fed by offline traffic, but used by an online channel. An Availability Server may have the capability to update cached data based on rules (interactive polling) and flag any inconsistencies for booking. An example system including an Availability Server is shown in FIG. 21.

Note

The above-described steps can be implemented using standard well-known programming techniques. The novelty of the above-described embodiment lies not in the specific programming techniques but includes the use of the steps described to achieve the described results. Software programming code which embodies or forms part of the present invention is typically stored in permanent, non-transitory storage. In a client/server environment, such software programming code may be stored with storage associated with a server. The software programming code may be embodied on any of a variety of known media for use with a data processing system, such as a diskette, or hard drive, or CD ROM. The code may be distributed on such media, or may be distributed to users from the memory or storage of one computer system over a network of some type to other computer systems for use by users of such other systems. The techniques and methods for embodying software program code on physical media and/or distributing software code via networks are well known and will not be further discussed herein.

It will be understood that each element of the illustrations, and combinations of elements in the illustrations, can be implemented by general and/or special purpose hardware-based systems that perform the specified functions or steps, or by combinations of general and/or special-purpose hardware and computer instructions.

These program instructions may be provided to a processor to produce a machine, such that the instructions that execute on the processor create means for implementing the functions specified in the illustrations. The computer program instructions may be executed by a processor to cause a series of operational steps to be performed by the processor to produce a computer-implemented process such that the instructions that execute on the processor provide steps for implementing the functions specified in the illustrations. Accordingly, FIGS. 1-17 and 22 support combinations of means for performing the specified functions, combinations of steps for performing the specified functions, and program instruction means for performing the specified functions.

It is to be understood that the above-referenced arrangements are only illustrative of the application for the principles of the present invention. Numerous modifications and alternative arrangements can be devised without departing from the spirit and scope of the present invention. While the present invention has been shown in the drawings and fully described above with particularity and detail in connection with what is presently deemed to be the most practical and preferred example(s) of the invention, it will be apparent to those of ordinary skill in the art that numerous modifications can be made without departing from the principles and concepts of the invention as set forth herein.

Concepts

There are multiple concepts, described as concepts ‘A-H’ below, included in this disclosure. The following may be helpful in defining these concepts. Aspects of the concepts may be combined.

A. Method of Providing Price Estimates

There is provided a method of providing price estimates, the method including the steps of:

(i) a computer server receiving a request for a price for goods or services, such as airfares, together with parameters defining those goods or services,

(ii) configuring one or more processors to determine estimated prices from an incomplete historical price dataset by analysing patterns in that dataset, at any time with respect to step (i) above;

(iii) configuring one or more processors to calculate estimates for the requested price for the goods or services that satisfy the parameters; and

(iv) providing the price estimates to an end-user computing device, such as a personal computer, smartphone or tablet.

The above may include additionally any of the following, alone or in combination:

-   -   the method, wherein the parameters defining those goods or         services include one or more of the following: activity type,         such as airfare, hotel booking, train fare; date range;         destination; origin; desired weather conditions; star ratings;         keywords; any other user defined preference.     -   determination of estimated prices is performed by inferring,         deriving or predicting estimated prices.     -   step (ii) comprises: (a) obtaining historical price quotes from         a computer data store; (b) grouping the historical price quotes         by category; (c) deriving statistics for each group; (d) storing         on a computer for each group a classifier including the derived         statistics, and (e) identifying groups with stored classifiers         to which the requested price corresponds.     -   step (iii) comprises: calculating a set of estimates for the         requested price over the specified date range using statistics         from the stored classifiers corresponding to the identified         groups.     -   step (ii) includes using rules in order to analyse patterns in         the dataset.     -   step (ii) includes a naïve Bayes classifier machine learning         approach which produces a probabilistic model of prices, and         that model is used to predict unobserved prices.     -   classifiers are trained using observed prices and sets of         features that correspond to them.     -   the features relate to the request, and include one or more of:         departure day of week, length of stay, stay Saturday, airline,         time to travel, route, month.     -   a classifier then predicts the price of an unobserved price by         being given a set of features and providing a most likely price         to have those features.     -   features may be derived by training multiple models with         different features and comparing the predictive accuracy of the         different models.     -   step (ii) includes building a statistical model from historical         prices, identifying missing quote candidates, and pricing quote         candidates based on the statistical model.     -   estimating prices for each candidate quote occurs in the         following steps: extracting category feature values from the         quote; retrieving from a database a classifier trained for an         extracted category; extracting all feature values from the quote         candidate; classifying the candidate quote by calculating Bayes         posterior probabilities for each price range stored in a         classifier and choosing a price range class with a highest Bayes         posterior probability, and attaching a price class to a         candidate quote.     -   inputs for the statistical model include: list of routes,         classifier categorization scheme, historical quotes, and a set         of supported features with weights.     -   historical quotes are filtered by age.     -   inputs for the statistical model include reversed route         equivalents.     -   the method including the step of: including cached fare prices         in the set of price estimates.     -   the set of price estimates is constructed without querying a         Distribution System after step (i).     -   the price is for a journey that is a one-way journey.     -   the price is for a journey that is a return journey.     -   the price includes an air fare price.     -   the price includes a train fare price.     -   the price includes a car hire price.     -   the price includes a hotel price.     -   the request comprises a flexible search request.     -   a final result of the method is up to one quote per input date         or dates pair.     -   The method including the steps of: (A) configuring the one or         more processors to determine confidence ranges of the estimated         prices from an incomplete historical price dataset by analysing         patterns in that dataset, at any time with respect to step (i),         and (B) configuring the one or more processors to calculate         confidence ranges of the estimated prices for the requested         price for the goods or services that satisfy the parameters.     -   The method further comprising the step of: (C) providing the         confidence ranges together with the fare price estimates to an         end-user computing device, such as a personal computer,         smartphone or tablet.     -   The method further comprising the step of: using the confidence         ranges to decide whether to display a price to a user, or to         provide a probable range of prices to a user.     -   the probable range of prices are displayed as error bars.     -   a date range includes only one outward date.     -   a date range includes only one return date.     -   the method including a method of providing a set of best return         fare price estimates for a specified range of outward dates and         a specified range of return dates, wherein: step (i) includes         receiving a request for a return fare price for a specified         range of outward dates and a specified range of return dates for         a journey from a starting location to a destination location,         and step (iv) includes providing the set of best return fare         price estimates for the specified range of outward dates and for         the specified range of return dates.     -   the set of best return fare price estimates are provided in a         bar chart format.     -   an estimation process is parameterized by one or more of: a         minimum Bayes posterior probability required to accept a         classification result; a maximum number of route operators         involved in candidates' generation, or a random variation added         to Bayes posterior probability to avoid ties.     -   the method is performed on a server from which estimation         services for fare availability and price are provided.

There is provided a server configured to provide price estimates, the server arranged to:

(i) receive a request for a price for goods or services, such as airfares, together with parameters defining those goods or services, including one or more of the following: activity type, such as airfare, hotel booking, train fare; date range; destination; origin; desired weather conditions; star ratings; keywords; any other user defined preference; (ii) determine estimated prices from an incomplete historical price dataset by analysing patterns in that dataset, at any time with respect to (i) above; (iii) calculate estimates for the requested price for the goods or services that satisfy the parameters and (iv) provide the price estimates.

The server may include additionally any of the following, alone or in combination:

(ii) the server is arranged to: obtain historical prices from a computer data store; group the historical prices by category; derive statistics for each group; store for each group a classifier including the derived statistics, and identify groups with stored classifiers to which the requested price corresponds.

-   -   the server is arranged to: calculate a set of estimates for the         requested price over the specified date range using statistics         from the stored classifiers corresponding to the identified         groups.     -   The server is further arranged to perform a method of any of         aspect of concept A.

There is provided a computer program product embodied on a non-transient storage medium, the computer program product when running on a computer arranged to provide price estimates, the computer program product when running on a computer arranged to:

(i) receive a request for a price for goods or services, such as airfares, together with parameters defining those goods or services, including one or more of the following: activity type, such as airfare, hotel booking, train fare; date range; destination; origin; desired weather conditions; star ratings; keywords; any other user defined preference; (ii) determine estimated prices from an incomplete historical price dataset by analysing patterns in that dataset, at any time with respect to (i) above; (iii) calculate estimates for the requested price for the goods or services that satisfy the parameters, and (iv) provide the price estimates.

The computer program product may be arranged to perform a method of any aspect of concept A.

There is provided a computer terminal in connection with a server of any server of concept A, the computer terminal arranged to send a request for a price estimate for a specified date range for a journey from a starting location to a destination location, wherein the computer terminal is further arranged to receive price estimates.

There is provided an item or a service, such as an airline ticket, and in which a price estimate for that item or service is provided using the method defined in any aspect of concept A, or a server defined in any aspect of concept A.

There is provided a web-based price comparison web site, with which end-users can interact by providing a request for a price for goods or services, and that web-based price comparison web site provides that request to a server that estimates the price(s) using the method of any aspect of concept A.

B. Method of Inferring which Fare Classes are Available for a Journey

Method of inferring which fare classes are available for a journey from a starting location to a destination location on a particular date, the method including the steps of:

(i) defining a request for fare prices for the journey from the starting location to the destination location on the particular date;

(ii) inferring, estimating or predicting estimated fare prices from an incomplete historical price dataset by analysing patterns in that dataset;

(iii) calculating estimates for the requested fare prices using the results of step (ii),

(iv) sending the request to a Distribution System for fare prices for the journey from the starting location to the destination location on a particular date;

(v) receiving from the Distribution System the Distribution System's fare prices for the journey from the starting location to the destination location on the particular date;

(vi) comparing the calculated estimates for the requested fare prices from step (iii) with the Distribution System's fare prices received in step (v) so as to infer which fare classes are available for the journey from the starting location to the destination location on the particular date, and (vii) outputting the inferred fare class availability for the journey from the starting location to the destination location on the particular date.

The above may include additionally any of the following, alone or in combination:

-   -   the method, wherein step (ii) comprises:         -   obtaining historical fare quotes from a computer data store;         -   grouping the historical fare quotes by category;         -   deriving statistics for each group;         -   storing on a computer for each group a classifier including             the derived statistics, and         -   identifying groups with stored classifiers to which the             requested fare prices correspond.     -   the method, wherein step (iii) comprises: calculating a set of         estimates for the requested fare prices over the specified date         range using statistics from the stored classifiers corresponding         to the identified groups.     -   the Distribution System is a Global Distribution System.     -   an inferred fare class price is included with each inferred fare         class availability.     -   including the step of sending the output to a server,     -   the server is an airline server.     -   step (ii) includes using rules in order to analyse patterns in         the dataset.     -   step (ii) includes a naïve Bayes classifier machine learning         approach which produces a probabilistic model of fares, and that         model is used to predict unobserved fares.     -   classifiers are trained using observed prices and sets of         features that correspond to them.     -   the features relate to the request, and include one or more of:         departure day of week, length of stay, stay Saturday, airline,         time to travel, route, month,     -   a classifier then predicts the price of an unobserved fare by         being given a set of features and providing a most likely price         to have those features.     -   features may be derived by training multiple models with         different features and comparing the predictive accuracy of the         different models.     -   step (ii) includes building a statistical model from historical         prices, identifying missing quote candidates, and pricing quote         candidates based on the statistical model.     -   estimating prices for each candidate quote occurs in the         following steps: extracting category feature values from the         quote; retrieving from a database a classifier trained for an         extracted category; extracting all feature values from the quote         candidate; classifying the candidate quote by calculating Bayes         posterior probabilities for each price range stored in a         classifier and choosing a price range class with a highest Bayes         posterior probability, and attaching a price class to a         candidate quote.     -   inputs for the statistical model include: list of routes,         classifier categorization scheme, historical quotes, and a set         of supported features with weights.     -   historical quotes are filtered by age.     -   inputs for the statistical model include reversed route         equivalents.     -   the method including the step of: including cached fare prices         in the set of fare price estimates.     -   the journey is a one-way journey.     -   the journey is a return journey.     -   the fare is an air fare.     -   the request comprises a flexible search request.     -   an estimation process is parameterized by one or more of: a         minimum Bayes posterior probability required to accept a         classification result; a maximum number of route operators         involved in candidates' generation, or a random variation added         to Bayes posterior probability to avoid ties.     -   the method is performed on a server from which estimation         services for fare availability and price are provided.

There is further provided a server configured to infer which fare classes are available for a journey from a starting location to a destination location on a particular date, the server arranged to:

(i) define a request for fare prices for the journey from the starting location to the destination location on the particular date;

(ii) infer, estimate or predict estimated fare prices from an incomplete historical price dataset by analysing patterns in that dataset;

(iii) calculate estimates for the requested fare prices using the results of the estimated fares of (ii),

(iv) send the request to a Distribution System for fare prices for the journey from the starting location to the destination location on a particular date;

(v) receive from the Distribution System the Distribution System's fare prices for the journey from the starting location to the destination location on the particular date;

(vi) compare the calculated estimates for the requested fare prices from the calculated estimates of (iii) with the Distribution System's fare prices received in (v) so as to infer which fare classes are available for the journey from the starting location to the destination location on the particular date, and (vii) output the inferred fare class availability for the journey from the starting location to the destination location on the particular date.

The server, wherein for (ii) the server is arranged to:

-   (a) obtain historical fare quotes from a computer data store; -   (b) group the historical fare quotes by category; -   (c) derive statistics for each group; -   (d) store for each group a classifier including the derived     statistics, and -   (e) identify groups with stored classifiers to which the requested     fare price corresponds.

The server, wherein for (iii) the server is arranged to: calculate a set of estimates for the requested fare price over the specified date range using statistics from the stored classifiers corresponding to the identified groups.

The server, further arranged to perform a method including any of the above method limitations.

There is further provided a computer program product embodied on a non-transient storage medium, the computer program product when running on a computer arranged to infer which fare classes are available for a journey from a starting location to a destination location on a particular date, the computer program product when running on a computer arranged to:

(i) define a request for fare prices for the journey from the starting location to the destination location on the particular date;

(ii) infer, estimate or predict estimated fare prices from an incomplete historical price dataset by analysing patterns in that dataset;

(iii) calculate estimates for the requested fare prices using the results of the estimated fares of (ii),

(iv) send the request to a Distribution System for fare prices for the journey from the starting location to the destination location on a particular date;

(v) receive from the Distribution System the Distribution System's fare prices for the journey from the starting location to the destination location on the particular date;

(vi) compare the calculated estimates for the requested fare prices from the calculated estimates of (iii) with the Distribution System's fare prices received in (v) so as to infer which fare classes are available for the journey from the starting location to the destination location on the particular date, and (vii) output the inferred fare class availability for the journey from the starting location to the destination location on the particular date.

The computer program product, arranged to perform a method according any of the above method limitations.

There is provided a computer in connection with a server of any of the above server concepts of Concept B, the computer arranged to send a request defining the journey from the starting location to the destination location on the particular date, wherein the computer is further arranged to receive the outputted inferred fare class availability for the journey from the starting location to the destination location on the particular date.

C. Method of Estimating a Fare Price

A method of estimating a fare price, the method including the steps of:

(i) obtaining historical fare quotes from a computer data store;

(ii) grouping the historical fare quotes by category;

(iii) deriving statistics for each group;

(iv) storing on a computer for each group a classifier including the derived statistics;

(v) receiving a request for a fare price for a journey from a starting location to a destination location on a particular date;

(vi) identifying groups with stored classifiers to which the requested fare price corresponds,

(vii) calculating an estimate for the requested fare price using statistics from the stored classifiers corresponding to the identified groups, and

(viii) providing the requested fare price estimate.

D. Method of Estimating a Fare Price

A method of estimating a fare price, the method including the steps of:

(i) receiving a request for a fare price for a journey from a starting location to a destination location on a particular date;

(ii) inferring, estimating or predicting estimated fares from an incomplete historical price dataset by analysing patterns in that dataset;

(iii) calculating an estimate for the requested fare price using the results of step (ii), and

(iv) providing the requested fare price estimate.

E. Method of Providing a Set of Return Fare Price Estimates

A method of providing a set of return fare price estimates, the method including the steps of:

(i) obtaining historical fare quotes from a computer data store;

(ii) grouping the historical fare quotes by category;

(iii) deriving statistics for each group;

(iv) storing on a computer for each group a classifier including the derived statistics;

(v) receiving a request for a return fare price for a specified outward date and a specified return date for a journey from a starting location to a destination location;

(vi) identifying groups with stored classifiers to which the requested return fare price corresponds,

(vii) calculating a set of estimates for the requested return fare price for the specified outward and return dates using statistics from the stored classifiers corresponding to the identified groups, and

(viii) providing the set of fare price estimates.

F. Method of Providing a Set of Best Return Fare Price Estimates

A method of providing a set of best return fare price estimates for a specified range of outward dates and a specified range of return dates, the method including the steps of:

(i) obtaining historical fare quotes from a computer data store;

(ii) grouping the historical fare quotes by category;

(iii) deriving statistics for each group;

(iv) storing on a computer for each group a classifier including the derived statistics;

(v) receiving a request for a return fare price for a specified range of outward dates and a specified range of return dates for a journey from a starting location to a destination location;

(vi) identifying groups with stored classifiers to which the requested return fare price corresponds,

(vii) calculating a set of estimates for the requested return fare price for pairs of outward and return dates using statistics from the stored classifiers corresponding to the identified groups,

(viii) selecting a best fare price estimate for each pair of outward and return dates, and

(ix) providing the set of best return fare price estimates for each pair of outward and return dates.

G. Method of Providing a Set of Return Fare Price Estimates

A method of providing a set of return fare price estimates, the method including the steps of:

(i) receiving a request for a return fare price for a specified outward date and a specified return date for a journey from a starting location to a destination location;

(ii) inferring, estimating or predicting estimated fares from an incomplete historical price dataset by analysing patterns in that dataset;

(iii) calculating a set of estimates for the requested return fare price for the specified outward and return dates using the results of step (ii), and

(iv) providing the set of fare price estimates.

H. Method of Providing a Set of Best Return Fare Price Estimates

A method of providing a set of best return fare price estimates for a specified range of outward dates and a specified range of return dates, the method including the steps of:

(i) receiving a request for a return fare price for a specified range of outward dates and a specified range of return dates for a journey from a starting location to a destination location;

(ii) inferring, estimating or predicting estimated fares from an incomplete historical price dataset by analysing patterns in that dataset;

(iii) calculating a set of estimates for the requested return fare price for pairs of outward and return dates using the results of step (ii), and

(iv) providing the set of best return fare price estimates for each pair of outward and return dates. 

The invention claimed is:
 1. A method of reducing data storage requirements, and of providing travel-related price estimates, the method including the steps of: (i) a computer server receiving a request for prices for travel-related goods or services, together with parameters defining those travel-related goods or services, including a specified date range of at least two days; (ii) configuring one or more processors to determine estimated prices from an incomplete historical travel-related price dataset embodied on a non-transitory storage medium by analysing patterns in that travel-related price dataset, at any time with respect to step (i) above, the incomplete historical travel-related price dataset using a smaller data storage capacity than a complete historical travel-related price dataset, the configured one or more processors: (a) obtaining historical price quotes from the incomplete historical travel-related price dataset embodied on the non-transitory storage medium; (b) grouping the historical price quotes by category; (c) deriving statistics for each group; (d) storing on a computer for each group a plurality of classifiers including the derived statistics, and (e) identifying groups with stored classifiers to which the requested prices correspond; (iii) configuring one or more processors to calculate estimates for the requested prices for the travel-related goods or services that satisfy the parameters, the configured one or more processors calculating a set of estimates, including one estimate per day, for the requested prices over the specified date range of at least two days using statistics from the stored classifiers corresponding to the identified groups, for the travel-related goods or services that satisfy the parameters; and (iv) the computer server providing the calculated price estimates, including the one estimate per day over the specified date range of at least two days, to an end-user computing device.
 2. The method of claim 1, wherein the parameters defining those travel-related goods or services further include one or more of the following: activity type, airfare, hotel booking, train fare; destination; origin; desired weather conditions; star ratings; keywords.
 3. The method of claim 1, wherein determination of estimated prices is performed by inferring, deriving or predicting estimated prices.
 4. The method of claim 1, wherein step (ii) includes using rules in order to analyse patterns in the dataset.
 5. The method of claim 1, wherein step (ii) includes a naïve Bayes classifier machine learning approach which produces a probabilistic model of prices, and that model is used to predict unobserved prices.
 6. The method of claim 5, wherein classifiers are trained using observed prices and sets of features that correspond to them.
 7. The method of claim 6, wherein the features relate to the request, and include one or more of: departure day of week, length of stay, stay Saturday, airline, time to travel, route, month.
 8. The method of claim 6, wherein a classifier then predicts the price of an unobserved price by being given a set of features and providing a most likely price to have those features.
 9. The method of claim 6, wherein features may be derived by training multiple models with different features and comparing the predictive accuracy of the different models.
 10. The method of claim 1, wherein step (ii) includes building a statistical model from historical prices, identifying missing quote candidates, and pricing quote candidates based on the statistical model.
 11. The method of claim 10, wherein estimating prices for each candidate quote occurs in the following steps: extracting category feature values from the quote; retrieving from a database a classifier trained for an extracted category; extracting all feature values from the quote candidate; classifying the candidate quote by calculating Bayes posterior probabilities for each price range stored in a classifier and choosing a price range class with a highest Bayes posterior probability, and attaching a price class to a candidate quote.
 12. The method of claim 10, wherein inputs for the statistical model include: list of routes, classifier categorization scheme, historical quotes, and a set of supported features with weights.
 13. The method of claim 12, wherein historical quotes are filtered by age.
 14. The method of claim 10, wherein inputs for the statistical model include reversed route equivalents.
 15. The method of claim 1, the method including the step of: including cached fare prices in the set of price estimates.
 16. The method of claim 1, wherein the set of price estimates is constructed without querying a Distribution System after step (i).
 17. The method of claim 1, wherein the prices are for a journey that is a one-way journey.
 18. The method of claim 1, wherein the prices are for a journey that is a return journey.
 19. The method of claim 1, wherein the prices include air fare prices.
 20. The method of claim 1, wherein the prices include train fare prices.
 21. The method of claim 1, wherein the prices include car hire prices.
 22. The method of claim 1, wherein the prices include hotel prices.
 23. The method of claim 1, wherein the request comprises a flexible search request.
 24. The method of claim 1, including the steps of (A) configuring the one or more processors to determine confidence ranges of the estimated prices from an incomplete historical price dataset by analysing patterns in that dataset, at any time with respect to step (i), and (B) configuring the one or more processors to calculate confidence ranges of the estimated prices for the requested prices for the goods or services that satisfy the parameters.
 25. The method of claim 24, further comprising the step of: (C) providing the confidence ranges together with the cafe prices estimates to an end-user computing device.
 26. The method of claim 24, further comprising the step of: using the confidence ranges to decide whether to display a price to a user, or to provide a probable range of prices to a user.
 27. The method of claim 26, wherein the probable range of prices are displayed as error bars.
 28. The method of claim 1, the method including a method of providing a set of best return fare price estimates for a specified range of outward dates and a specified range of return dates, wherein: step (i) includes receiving a request for a return fare price for a specified range of outward dates and a specified range of return dates for a journey from a starting location to a destination location, and step (iv) includes providing the set of best return fare price estimates for the specified range of outward dates and for the specified range of return dates.
 29. The method of claim 28, wherein the set of best return fare price estimates are provided in a bar chart format.
 30. The method of claim 1, wherein an estimation process is parameterized by one or more of: a minimum Bayes posterior probability required to accept a classification result; a maximum number of route operators involved in candidates' generation, or a random variation added to Bayes posterior probability to avoid ties.
 31. The method of claim 1, wherein the method is performed on a server from which estimation services for fare availability and price are provided.
 32. A server configured to provide travel-related price estimates, the server arranged to: (i) receive a request for prices for travel-related goods or services, together with parameters defining those travel-related goods or services, including a specified date range of at least two days; (ii) determine estimated prices from an incomplete historical travel-related price dataset embodied on a non-transitory storage medium by analysing patterns in that travel-related price dataset, at any time with respect to (i) above, the incomplete historical travel-related price dataset using a smaller data storage capacity than a complete historical travel-related price dataset, wherein the server is arranged to: (a) obtain historical price quotes from the incomplete historical travel-related price dataset embodied on the non-transitory storage medium; (b) group the historical price quotes by category; (c) derive statistics for each group; (d) store for each group a plurality of classifiers including the derived statistics, and (e) identify groups with stored classifiers to which the requested prices correspond; (iii) calculate estimates for the requested prices for the travel-related goods or services that satisfy the parameters, in which the server is arranged to: calculate a set of estimates, including one estimate per day, for the requested prices over the specified date range of at least two days using statistics from the stored classifiers corresponding to the identified groups, and (iv) provide the calculated price estimates, including the one estimate per day over the specified date range of at least two days.
 33. The server of claim 32, further arranged to use rules in order to analyse patterns in the dataset.
 34. A computer program product embodied on a first non-transitory storage medium, the computer program product executable on a computer to provide travel-related price estimates, the computer program product executable on a computer to: (i) receive a request for prices for travel-related goods or services, together with parameters defining those travel-related goods or services, including a specified date range of at least two days; (ii) determine estimated prices from an incomplete historical travel-related price dataset embodied on a second non-transitory storage medium by analysing patterns in that travel-related price dataset, at any time with respect to (i) above, the incomplete historical travel-related price dataset using a smaller data storage capacity than a complete historical travel-related price dataset, in particular to: (a) obtain historical price quotes from the incomplete historical travel-related price dataset embodied on the second non-transitory storage medium; (b) group the historical price quotes by category; (c) derive statistics for each group; (d) store on a computer for each group a plurality of classifiers including the derived statistics, and (e) identify groups with stored classifiers to which the requested price corresponds; (iii) calculate estimates for the requested prices for the travel-related goods or services that satisfy the parameters, by calculating a set of estimates, including one estimate per day, for the requested prices over the specified date range of at least two days using statistics from the stored classifiers corresponding to the identified groups, and (iv) provide the calculated price estimates, including the one estimate per day over the specified date range of at least two days.
 35. The computer program product of claim 34, wherein the parameters defining those travel-related goods or services further include one or more of the following: activity type, airfare, hotel booking, train fare; destination; origin; desired weather conditions; star ratings; keywords.
 36. The server of claim 32, wherein the parameters defining those travel-related goods or services further include one or more of the following: activity type, airfare, hotel booking, train fare; destination; origin; desired weather conditions; star ratings; keywords. 